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Autori principali: Marsico, Veronica, Quintero-Rincon, Antonio, Batatia, Hadj
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2511.01098
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author Marsico, Veronica
Quintero-Rincon, Antonio
Batatia, Hadj
author_facet Marsico, Veronica
Quintero-Rincon, Antonio
Batatia, Hadj
contents This study presents a novel method for diagnosing respiratory diseases using image data. It combines Epanechnikov's non-parametric kernel density estimation (EKDE) with a bimodal logistic regression classifier in a statistical-model-based learning scheme. EKDE's flexibility in modeling data distributions without assuming specific shapes and its adaptability to pixel intensity variations make it valuable for extracting key features from medical images. The method was tested on 13808 randomly selected chest X-rays from the COVID-19 Radiography Dataset, achieved an accuracy of 70.14%, a sensitivity of 59.26%, and a specificity of 74.18%, demonstrating moderate performance in detecting respiratory disease while showing room for improvement in sensitivity. While clinical expertise remains essential for further refining the model, this study highlights the potential of EKDE-based approaches to enhance diagnostic accuracy and reliability in medical imaging.
format Preprint
id arxiv_https___arxiv_org_abs_2511_01098
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Epanechnikov nonparametric kernel density estimation based feature-learning in respiratory disease chest X-ray images
Marsico, Veronica
Quintero-Rincon, Antonio
Batatia, Hadj
Computer Vision and Pattern Recognition
This study presents a novel method for diagnosing respiratory diseases using image data. It combines Epanechnikov's non-parametric kernel density estimation (EKDE) with a bimodal logistic regression classifier in a statistical-model-based learning scheme. EKDE's flexibility in modeling data distributions without assuming specific shapes and its adaptability to pixel intensity variations make it valuable for extracting key features from medical images. The method was tested on 13808 randomly selected chest X-rays from the COVID-19 Radiography Dataset, achieved an accuracy of 70.14%, a sensitivity of 59.26%, and a specificity of 74.18%, demonstrating moderate performance in detecting respiratory disease while showing room for improvement in sensitivity. While clinical expertise remains essential for further refining the model, this study highlights the potential of EKDE-based approaches to enhance diagnostic accuracy and reliability in medical imaging.
title Epanechnikov nonparametric kernel density estimation based feature-learning in respiratory disease chest X-ray images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.01098